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Network Events on Multiple Space and Time Scales in Cultured Neural Networks and in a Stochastic Rate Model

机译:培养的神经网络和随机率模型中多个时空尺度上的网络事件

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摘要

Cortical networks, in-vitro as well as in-vivo, can spontaneously generate a variety of collective dynamical events such as network spikes, UP and DOWN states, global oscillations, and avalanches. Though each of them has been variously recognized in previous works as expression of the excitability of the cortical tissue and the associated nonlinear dynamics, a unified picture of the determinant factors (dynamical and architectural) is desirable and not yet available. Progress has also been partially hindered by the use of a variety of statistical measures to define the network events of interest. We propose here a common probabilistic definition of network events that, applied to the firing activity of cultured neural networks, highlights the co-occurrence of network spikes, power-law distributed avalanches, and exponentially distributed ‘quasi-orbits’, which offer a third type of collective behavior. A rate model, including synaptic excitation and inhibition with no imposed topology, synaptic short-term depression, and finite-size noise, accounts for all these different, coexisting phenomena. We find that their emergence is largely regulated by the proximity to an oscillatory instability of the dynamics, where the non-linear excitable behavior leads to a self-amplification of activity fluctuations over a wide range of scales in space and time. In this sense, the cultured network dynamics is compatible with an excitation-inhibition balance corresponding to a slightly sub-critical regime. Finally, we propose and test a method to infer the characteristic time of the fatigue process, from the observed time course of the network’s firing rate. Unlike the model, possessing a single fatigue mechanism, the cultured network appears to show multiple time scales, signalling the possible coexistence of different fatigue mechanisms.
机译:体外和体内的皮质网络都可以自发地产生各种集体的动力学事件,例如网络尖峰,UP和DOWN状态,全局振荡和雪崩。尽管它们每个都已在先前的工作中被不同程度地认为是皮层组织的兴奋性和相关的非线性动力学的表达,但人们仍希望获得统一的决定因素(动力学和建筑因素)的图片。使用各种统计方法来定义感兴趣的网络事件也部分地阻碍了进展。我们在这里提出网络事件的概率概率定义,该定义适用于培养的神经网络的激发活动,突出了网络峰值,幂律分布雪崩和指数分布的“准轨道”的共现,这提供了第三点集体行为的类型。速率模型,包括没有强制拓扑的突触激发和抑制,突触短期抑制和有限大小的噪声,解释了所有这些不同的,共存的现象。我们发现,它们的出现在很大程度上受到动力学振荡不稳定的影响,非线性激励行为导致活动波动在时空的较大范围内自放大。从这个意义上讲,培养的网络动力学与对应于次临界状态的激发抑制平衡相兼容。最后,我们提出并测试一种方法,该方法可从观察到的网络点火速率的时间过程中推断出疲劳过程的特征时间。与具有单一疲劳机制的模型不同,培养的网络似乎显示了多个时间尺度,这表明不同疲劳机制可能共存。

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